A common strategy for improving optimization algorithms is to restart the algorithm when it is believed to be trapped in an inferior part of the search space. However, while specific restart strategies have been developed for specific problems (and specific algorithms), restarts are typically not regarded as a general tool to speed up an optimization algorithm. In fact, many optimization algorithms do not employ restarts at all. Recently, "bet-and-run" was introduced in the context of mixed-integer programming, where first a number of short runs with randomized initial conditions is made, and then the most promising run of these is continued. In this article, we consider two classical NP-complete combinatorial optimization problems, traveli...
AbstractThis paper analyzes the performance of local search algorithms (guided by the best-to-date s...
The optimization method employing iterated improvementwith random restart (I2R2) is studied. Associa...
Restart strategies are commonly used for minimizing the computational cost of randomized algorithms,...
A commonly used strategy for improving optimization algorithms is to restart the algorithm when it i...
<p><em><strong>Results of Bet-and-Run Strategies with Different Decision Makers on the Traveling Sal...
Bet-and-run initialisation strategies have been experimentally shown to be beneficial on classical N...
Throughout the course of an optimization run, the probability of yielding further improvement become...
Randomized Search heuristics are frequently applied to NP-hard combinatorial optimization problems. ...
Randomized search heuristics are frequently applied to NP-hard combinatorial optimization problems. ...
Two common questions when one uses a stochastic global optimization algorithm, e.g., simulated annea...
The Probabilistic Orienteering Problem is an optimization problem where a set of customers, each wit...
Randomized search heuristics are frequently applied to NP-hard combinatorial optimization problems. ...
Local search (LS) and multi-agent-based search (ERA [1]) are stochastic and incomplete procedures fo...
Abstract. Constructive multi-start search algorithms are commonly used to address combinatorial opti...
Abstract. Improving Hit-and-Run is a random search algorithm for global optimization that at each it...
AbstractThis paper analyzes the performance of local search algorithms (guided by the best-to-date s...
The optimization method employing iterated improvementwith random restart (I2R2) is studied. Associa...
Restart strategies are commonly used for minimizing the computational cost of randomized algorithms,...
A commonly used strategy for improving optimization algorithms is to restart the algorithm when it i...
<p><em><strong>Results of Bet-and-Run Strategies with Different Decision Makers on the Traveling Sal...
Bet-and-run initialisation strategies have been experimentally shown to be beneficial on classical N...
Throughout the course of an optimization run, the probability of yielding further improvement become...
Randomized Search heuristics are frequently applied to NP-hard combinatorial optimization problems. ...
Randomized search heuristics are frequently applied to NP-hard combinatorial optimization problems. ...
Two common questions when one uses a stochastic global optimization algorithm, e.g., simulated annea...
The Probabilistic Orienteering Problem is an optimization problem where a set of customers, each wit...
Randomized search heuristics are frequently applied to NP-hard combinatorial optimization problems. ...
Local search (LS) and multi-agent-based search (ERA [1]) are stochastic and incomplete procedures fo...
Abstract. Constructive multi-start search algorithms are commonly used to address combinatorial opti...
Abstract. Improving Hit-and-Run is a random search algorithm for global optimization that at each it...
AbstractThis paper analyzes the performance of local search algorithms (guided by the best-to-date s...
The optimization method employing iterated improvementwith random restart (I2R2) is studied. Associa...
Restart strategies are commonly used for minimizing the computational cost of randomized algorithms,...